应用简介
Qiskit是全球最受欢迎的开源量子计算框架,下载量超过1300万次。构建量子电路,针对硬件优化,在模拟器或真实量子计算机上执行,并分析结果。支持IBM Quantum(100+量子比特系统)、IonQ、Amazon Braket和其他提供商。
---
name: qiskit
description: "Qiskit is the world's most popular open-source quantum computing framework with 13M+ downloads. Build quantum circuits, optimize for hardware, execute on simulators or real quantum computers, and analyze results. Supports IBM Quantum (100+ qubit systems), IonQ, Amazon Braket, and other providers."
license: Apache-2.0 license
metadata:
skill-author: K-Dense Inc.
risk: unknown
source: community
---
# Qiskit
## When to Use
- You are building or optimizing quantum circuits with Qiskit for simulators or real hardware.
- You need IBM Quantum-style tooling for transpilation, execution, visualization, or algorithm libraries.
- You want guidance on moving from a simple circuit prototype to backend-aware execution.
## Overview
Qiskit is the world's most popular open-source quantum computing framework with 13M+ downloads. Build quantum circuits, optimize for hardware, execute on simulators or real quantum computers, and analyze results. Supports IBM Quantum (100+ qubit systems), IonQ, Amazon Braket, and other providers.
**Key Features:**
- 83x faster transpilation than competitors
- 29% fewer two-qubit gates in optimized circuits
- Backend-agnostic execution (local simulators or cloud hardware)
- Comprehensive algorithm libraries for optimization, chemistry, and ML
## Quick Start
### Installation
```bash
uv pip install qiskit
uv pip install "qiskit[visualization]" matplotlib
```
### First Circuit
```python
from qiskit import QuantumCircuit
from qiskit.primitives import StatevectorSampler
# Create Bell state (entangled qubits)
qc = QuantumCircuit(2)
qc.h(0) # Hadamard on qubit 0
qc.cx(0, 1) # CNOT from qubit 0 to 1
qc.measure_all() # Measure both qubits
# Run locally
sampler = StatevectorSampler()
result = sampler.run([qc], shots=1024).result()
counts = result[0].data.meas.get_counts()
print(counts) # {'00': ~512, '11': ~512}
```
### Visualization
```python
from qiskit.visualization import plot_histogram
qc.draw('mpl') # Circuit diagram
plot_histogram(counts) # Results histogram
```
## Core Capabilities
### 1. Setup and Installation
For detailed installation, authentication, and IBM Quantum account setup:
- **See `references/setup.md`**
Topics covered:
- Installation with uv
- Python environment setup
- IBM Quantum account and API token configuration
- Local vs. cloud execution
### 2. Building Quantum Circuits
For constructing quantum circuits with gates, measurements, and composition:
- **See `references/circuits.md`**
Topics covered:
- Creating circuits with QuantumCircuit
- Single-qubit gates (H, X, Y, Z, rotations, phase gates)
- Multi-qubit gates (CNOT, SWAP, Toffoli)
- Measurements and barriers
- Circuit composition and properties
- Parameterized circuits for variational algorithms
### 3. Primitives (Sampler and Estimator)
For executing quantum circuits and computing results:
- **See `references/primitives.md`**
Topics covered:
- **Sampler**: Get bitstring measurements and probability distributions
- **Estimator**: Compute expectation values of observables
- V2 interface (StatevectorSampler, StatevectorEstimator)
- IBM Quantum Runtime primitives for hardware
- Sessions and Batch modes
- Parameter binding
### 4. Transpilation and Optimization
For optimizing circuits and preparing for hardware execution:
- **See `references/transpilation.md`**
Topics covered:
- Why transpilation is necessary
- Optimization levels (0-3)
- Six transpilation stages (init, layout, routing, translation, optimization, scheduling)
- Advanced features (virtual permutation elision, gate cancellation)
- Common parameters (initial_layout, approximation_degree, seed)
- Best practices for efficient circuits
### 5. Visualization
For displaying circuits, results, and quantum states:
- **See `references/visualization.md`**
Topics covered:
- Circuit drawings (text, matplotlib, LaTeX)
- Result histograms
- Quantum state visualization (Bloch sphere, state city, QSphere)
- Backend topology and error maps
- Customization and styling
- Saving publication-quality figures
### 6. Hardware Backends
For running on simulators and real quantum computers:
- **See `references/backends.md`**
Topics covered:
- IBM Quantum backends and authentication
- Backend properties and status
- Running on real hardware with Runtime primitives
- Job management and queuing
- Session mode (iterative algorithms)
- Batch mode (parallel jobs)
- Local simulators (StatevectorSampler, Aer)
- Third-party providers (IonQ, Amazon Braket)
- Error mitigation strategies
### 7. Qiskit Patterns Workflow
For implementing the four-step quantum computing workflow:
- **See `references/patterns.md`**
Topics covered:
- **Map**: Translate problems to quantum circuits
- **Optimize**: Transpile for hardware
- **Execute**: Run with primitives
- **Post-process**: Extract and analyze results
- Complete VQE example
- Session vs. Batch execution
- Common workflow patterns
### 8. Quantum Algorithms and Applications
For implementing specific quantum algorithms:
- **See `references/algorithms.md`**
Topics covered:
- **Optimization**: VQE, QAOA, Grover's algorithm
- **Chemistry**: Molecular ground states, excited states, Hamiltonians
- **Machine Learning**: Quantum kernels, VQC, QNN
- **Algorithm libraries**: Qiskit Nature, Qiskit ML, Qiskit Optimization
- Physics simulations and benchmarking
## Workflow Decision Guide
**If you need to:**
- Install Qiskit or set up IBM Quantum account → `references/setup.md`
- Build a new quantum circuit → `references/circuits.md`
- Understand gates and circuit operations → `references/circuits.md`
- Run circuits and get measurements → `references/primitives.md`
- Compute expectation values → `references/primitives.md`
- Optimize circuits for hardware → `references/transpilation.md`
- Visualize circuits or results → `references/visualization.md`
- Execute on IBM Quantum hardware → `references/backends.md`
- Connect to third-party providers → `references/backends.md`
- Implement end-to-end quantum workflow → `references/patterns.md`
- Build specific algorithm (VQE, QAOA, etc.) → `references/algorithms.md`
- Solve chemistry or optimization problems → `references/algorithms.md`
## Best Practices
### Development Workflow
1. **Start with simulators**: Test locally before using hardware
```python
from qiskit.primitives import StatevectorSampler
sampler = StatevectorSampler()
```
2. **Always transpile**: Optimize circuits before execution
```python
from qiskit import transpile
qc_optimized = transpile(qc, backend=backend, optimization_level=3)
```
3. **Use appropriate primitives**:
- Sampler for bitstrings (optimization algorithms)
- Estimator for expectation values (chemistry, physics)
4. **Choose execution mode**:
- Session: Iterative algorithms (VQE, QAOA)
- Batch: Independent parallel jobs
- Single job: One-off experiments
### Performance Optimization
- Use optimization_level=3 for production
- Minimize two-qubit gates (major error source)
- Test with noisy simulators before hardware
- Save and reuse transpiled circuits
- Monitor convergence in variational algorithms
### Hardware Execution
- Check backend status before submitting
- Use least_busy() for testing
- Save job IDs for later retrieval
- Apply error mitigation (resilience_level)
- Start with fewer shots, increase for final runs
## Common Patterns
### Pattern 1: Simple Circuit Execution
```python
from qiskit import QuantumCircuit, transpile
from qiskit.primitives import StatevectorSampler
qc = QuantumCircuit(2)
qc.h(0)
qc.cx(0, 1)
qc.measure_all()
sampler = StatevectorSampler()
result = sampler.run([qc], shots=1024).result()
counts = result[0].data.meas.get_counts()
```
### Pattern 2: Hardware Execution with Transpilation
```python
from qiskit_ibm_runtime import QiskitRuntimeService, SamplerV2 as Sampler
from qiskit import transpile
service = QiskitRuntimeService()
backend = service.backend("ibm_brisbane")
qc_optimized = transpile(qc, backend=backend, optimization_level=3)
sampler = Sampler(backend)
job = sampler.run([qc_optimized], shots=1024)
result = job.result()
```
### Pattern 3: Variational Algorithm (VQE)
```python
from qiskit_ibm_runtime import Session, EstimatorV2 as Estimator
from scipy.optimize import minimize
with Session(backend=backend) as session:
estimator = Estimator(session=session)
def cost_function(params):
bound_qc = ansatz.assign_parameters(params)
qc_isa = transpile(bound_qc, backend=backend)
result = estimator.run([(qc_isa, hamiltonian)]).result()
return result[0].data.evs
result = minimize(cost_function, initial_params, method='COBYLA')
```
## Additional Resources
- **Official Docs**: https://quantum.ibm.com/docs
- **Qiskit Textbook**: https://qiskit.org/learn
- **API Reference**: https://docs.quantum.ibm.com/api/qiskit
- **Patterns Guide**: https://quantum.cloud.ibm.com/docs/en/guides/intro-to-patterns
## Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.
发布日期
5/16/2026
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SkillOPIC
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